A review over the applicability of image entropy in analyses of remote sensing datasets

02/05/2014
by   S. K. Katiyar, et al.
0

Entropy is the measure of uncertainty in any data and is adopted for maximisation of mutual information in many remote sensing operations. The availability of wide entropy variations motivated us for an investigation over the suitability preference of these versions to specific operations.

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